Defocus Blur Detection and Estimation from Imaging Sensors

Sensors (Basel). 2018 Apr 8;18(4):1135. doi: 10.3390/s18041135.

Abstract

Sparse representation has been proven to be a very effective technique for various image restoration applications. In this paper, an improved sparse representation based method is proposed to detect and estimate defocus blur of imaging sensors. Considering the fact that the patterns usually vary remarkably across different images or different patches in a single image, it is unstable and time-consuming for sparse representation over an over-complete dictionary. We propose an adaptive domain selection scheme to prelearn a set of compact dictionaries and adaptively select the optimal dictionary to each image patch. Then, with nonlocal structure similarity, the proposed method learns nonzero-mean coefficients' distributions that are much more closer to the real ones. More accurate sparse coefficients can be obtained and further improve the performance of results. Experimental results validate that the proposed method outperforms existing defocus blur estimation approaches, both qualitatively and quantitatively.

Keywords: adaptive domain selection; coefficients’ distributions; compact dictionaries; defocus blur; nonlocal structure similarity; sparse representation.